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The '''curse of dimensionality''' refers to various phenomena that arise when analyzing and organizing data in [[high-dimensional space]]s (often with hundreds or thousands of dimensions) that do not occur in low-dimensional settings such as the [[three-dimensional space|three-dimensional]] [[physical space]] of everyday experience.
 
There are multiple phenomena referred to by this name in domains such as [[numerical analysis]], [[Sampling (statistics)|sampling]], [[combinatorics]], [[machine learning]], [[data mining]] and [[database]]s. The common theme of these problems is that when the dimensionality increases, the [[volume]] of the space increases so fast that the available data becomes sparse. This sparsity is problematic for any method that requires statistical significance. In order to obtain a statistically sound and reliable result, the amount of data needed to support the result often grows exponentially with the dimensionality. Also organizing and searching data often relies on detecting areas where objects form groups with similar properties; in high dimensional data however all objects appear to be sparse and dissimilar in many ways which prevents common data organization strategies from being efficient.
 
The term ''curse of dimensionality'' was coined by [[Richard E. Bellman]] when considering problems in dynamic optimization.<ref>{{Cite book|author1=Richard Ernest Bellman|author2=Rand Corporation|title=Dynamic programming|url=http://books.google.com/books?id=7omhQgAACAAJ|year=1957|publisher=Princeton University Press|isbn=978-0-691-07951-6|postscript=}},<br />Republished: {{Cite book|author=Richard Ernest Bellman|title=Dynamic Programming|url=http://books.google.com/books?id=fyVtp3EMxasC|year=2003|publisher=Courier Dover Publications|isbn=978-0-486-42809-3}}</ref><ref>{{Cite book|author=Richard Ernest Bellman|title=Adaptive control processes: a guided tour|url=http://books.google.com/books?id=POAmAAAAMAAJ|year=1961|publisher=Princeton University Press}}</ref>
 
== The "curse of dimensionality" as open problem ==
 
The "curse of dimensionality" is often used{{Citation needed|date=October 2012}} as a blanket excuse for not dealing with high-dimensional data. However, the effects are not yet completely understood by the scientific community, and there is ongoing research. On one hand, the notion of [[intrinsic dimension]] refers to the fact that any low-dimensional data space can trivially be turned into a higher dimensional space by adding redundant (e.g.&nbsp;duplicate) or randomized dimensions, and in turn many high-dimensional data sets can be reduced to lower dimensional data without significant information loss. This is also reflected by the effectiveness of [[dimension reduction]] methods such as [[principal component analysis]] in many situations. For distance functions and nearest neighbor search, recent research also showed that data sets that exhibit the curse of dimensionality properties can still be processed unless there are too many irrelevant dimensions, while relevant dimensions can make some problems such as [[cluster analysis]] actually easier.<ref name="houle-ssdbm10" /><ref name="houle-sstd11" /> Secondly, methods such as [[Markov chain Monte Carlo]] or shared nearest neighbor methods<ref name="houle-ssdbm10" /> often work very well on data that were considered intractable by other methods due to high dimensionality.
 
== Curse of dimensionality in different domains ==
 
=== Combinatorics ===
In some problems, each variable can take one of several discrete values, or the range of possible values is divided to give a finite number of possibilities.  Taking the variables together, a huge number of combinations of values must be considered. This effect is also known as the [[combinatorial explosion]]. Even in the simplest case of d binary variables, the number of possible combinations already is <math>O(2^d)</math>, exponential in the dimensionality. Naively, each additional dimension doubles the effort needed to try all combinations.
 
=== Sampling ===
{{confusing|section|date=December 2013|reason=clarification needed on the hypercube formula. Why the factor of 10<sup>n(10-1)</sup>? In (10-1) does 10 stand for the number of dimensions of the unit hypercube and 1 for the number of dimensions of the unit interval and therefore can be generalized as n(D-d)?}}
There is an exponential increase in [[volume]] associated with adding extra dimensions to a [[Space (mathematics)|mathematical space]].  For example, 10<sup>2</sup>=100 evenly-spaced sample points suffice to sample a [[unit interval]] (a "1-dimensional cube") with no more than 10<sup>-2</sup>=0.01 distance between points; an equivalent sampling of a 10-dimensional [[unit hypercube]] with a lattice that has a spacing of 10<sup>-2</sup>=0.01 between adjacent points would require 10<sup>20</sup> sample points. In general, with a spacing distance of 10<sup>-n</sup> the 10-dimensional hypercube appears to be a factor of 10<sup>n(10-1)</sup> "larger" than the 1-dimensional hypercube, which is the unit interval. In the above example n=2: when using a sampling distance of 0.01 the 10-dimensional hypercube appears to be 10<sup>18</sup> "larger" than the unit interval. This effect is a combination of the combinatorics problems above and the distance function problems explained below.
 
=== Optimization ===
When solving dynamic [[optimization (mathematics)|optimization]] problems by numerical [[backward induction]], the objective function must be computed for each combination of values.  This is a significant obstacle when the dimension of the "state variable" is large.
 
=== Machine learning ===
In [[machine learning]] problems that involve learning a "state-of-nature" (maybe an infinite distribution) from a finite number of data samples in a high-dimensional [[feature space]] with each feature having a number of possible values, an enormous amount of training data are required to ensure that there are several samples with each combination of values. With a fixed number of training samples, the predictive power reduces as the dimensionality increases, and this is known as the ''Hughes effect''<ref>{{cite doi|10.1007/s11004-008-9156-6}}</ref> or ''Hughes phenomenon'' (named after Gordon F. Hughes).<ref>{{cite journal |last=Hughes |first=G.F. |title=On the mean accuracy of statistical pattern recognizers |journal=IEEE Transactions on Information Theory |volume=14 |issue=1 |pages=55–63 |date=January 1968 |doi=10.1109/TIT.1968.1054102 |url=http://ieeexplore.ieee.org/xpl/articleDetails.jsp?tp=&arnumber=1054102}}</ref><ref>Not to be confused with the unrelated, but similarly named, ''Hughes effect in [[electromagnetism]]'' (named after [http://spiedl.aip.org/vsearch/servlet/VerityServlet?KEY=SPIEDL&possible1=Hughes%2C+Declan+C.&possible1zone=author&maxdisp=25&smode=strresults&pjournals=OPEGAR%2CJBOPFO%2CPSISDG%2CJEIME5%2CJMMMGF%2CJARSC4%2CJNOACQ&deliveryType=spiedl&aqs=true Declan C. Hughes]) which refers to an asymmetry in the [[hysteresis]] curves of [[Magnetic core|laminated cores]] made of certain [[magnetic materials]], such as [[permalloy]] or [[mu-metal]], in alternating magnetic fields.</ref>
 
=== Bayesian statistics ===
The curse of dimensionality has often been a difficulty with [[Bayesian statistics]], for which the [[posterior distribution]]s often have many parameters.
 
However, this problem has been largely overcome by the advent of simulation-based Bayesian inference, especially using [[Markov chain Monte Carlo]] methods, which suffices for many practical problems. Of course, simulation-based methods converge slowly and therefore simulation-based methods are not a panacea for high-dimensional problems.
 
=== Distance functions ===
When a measure such as a [[Euclidean distance]] is defined using many coordinates, there is little difference in the distances between different pairs of samples.
 
One way to illustrate the "vastness" of high-dimensional Euclidean space is to compare the proportion of a [[hypersphere]] with radius <math>r</math> and dimension <math>d</math>, to that of a [[hypercube]] with sides of length <math>2r</math>, and equivalent dimension.
The volume of such a sphere is: <math>\frac{2r^d\pi^{d/2}}{d\Gamma(d/2)}</math>
The volume of the cube would be: <math>(2r)^d</math>
As the dimension <math>d</math> of the space increases, the hypersphere becomes an insignificant volume relative to that of the hypercube. This can clearly be seen by comparing the proportions as the dimension <math>d</math> goes to infinity:
:<math>\frac{\pi^{d/2}}{d2^{d-1}\Gamma(d/2)}\rightarrow 0</math> as <math>d \rightarrow \infty</math>.
 
Thus, in some sense, nearly all of the high-dimensional space is "far away" from the centre, or, to put it another way, the high-dimensional unit space can be said to consist almost entirely of the "corners" of the hypercube, with almost no "middle". This is an important intuition for understanding the [[chi-squared distribution]].{{Why?|date=May 2011}}
 
Given a single distribution, the minimum and the maximum distances become indiscernible as the difference between the minimum and maximum compared to the minimum distance converges to zero:<ref>{{cite doi | 10.1007/3-540-49257-7_15 }}</ref>
:<math>\lim_{d \to \infty} \frac{\operatorname{dist}_\max - \operatorname{dist}_\min}{\operatorname{dist}_\min} \to 0</math>.
 
This is often cited as distance functions losing their usefulness in high dimensionality.
 
=== Nearest neighbor search ===
The effect complicates [[nearest neighbor search]] in high dimensional space.  It is not possible to quickly reject candidates by using the difference in one coordinate as a lower bound for a distance based on all the dimensions.<ref>{{cite journal |first1=R.B. |last1=Marimont |first2=M.B. |last2=Shapiro |title=Nearest Neighbour Searches and the Curse of Dimensionality |journal=IMA J Appl Math |volume=24 |issue=1 |pages=59–70 |year=1979 |doi=10.1093/imamat/24.1.59 |url=http://imamat.oxfordjournals.org/content/24/1/59.short}}</ref><ref>{{cite journal |first1=Edgar |last1=Chávez |first2=Gonzalo |last2=Navarro |first3=Ricardo |last3=Baeza-Yates |first4=José Luis |last4=Marroquín |title=Searching in Metric Spaces |journal=ACM Computing Surveys |volume=33 |issue=3 |pages=273–321 |year=2001 |doi=10.1145/502807.502808 |url=http://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.100.7845&rep=rep1&type=pdf |format=PDF}}</ref>
 
However, recent research indicates that the mere number of dimensions does not necessarily result in problems,<ref name="houle-ssdbm10">{{cite doi | 10.1007/978-3-642-13818-8_34 }}</ref> since relevant additional dimensions can also increase the contrast. In addition, the resulting ranking remains useful to discern close and far neighbors. Irrelevant ("noise") dimensions however reduce the contrast as expected. In [[time series analysis]], where the data are inherently high-dimensional, distance functions also work reliably as long as the [[signal-to-noise ratio]] is high enough.<ref name="houle-sstd11">{{cite doi | 10.1007/978-3-642-22922-0_25 }}</ref>
 
====''k''-nearest neighbor classification====
Another effect of high dimensionality on distance functions concerns ''k''-nearest neighbor (''k''-NN) [[Graph (mathematics)|graphs]] constructed from a [[data set]] using some distance functions. As dimensionality increases, the [[indegree]] distribution of the ''k''-NN [[Directed graph|digraph]] becomes [[Skewness|skewed]] to the right, resulting in the emergence of hubs, as data instances that appear in many more ''k''-NN lists of other instances from the [[data set]] than expected. This phenomenon can have a considerable impact on various techniques for [[Classification (machine learning)|classification]] (including the [[K-nearest neighbor algorithm|''k''-NN classifier]]), [[semi-supervised learning]], and [[Cluster analysis|clustering]],<ref>{{Cite journal
| last1=Radovanović | first1=Miloš
| last2=Nanopoulos | first2=Alexandros
| last3=Ivanović | first3=Mirjana
| year=2010
| title=Hubs in space: Popular nearest neighbors in high-dimensional data
| journal=Journal of Machine Learning Research
| volume=11
| pages=2487–2531
| url=http://www.jmlr.org/papers/volume11/radovanovic10a/radovanovic10a.pdf
| format=PDF
}}</ref> and it also affects [[information retrieval]].<ref>{{Cite doi | 10.1145/1835449.1835482 }}</ref>
 
=== Anomaly detection ===
 
In a recent survey, Zimek et al. identified the following problems when searching for [[anomaly detection|anomalies]] in high-dimensional data:<ref name="survey">{{cite doi | 10.1002/sam.11161}}</ref>
 
# Concentration of scores and distances: derived values such as distances become numerically similar
# Irrelevant attributes: in high dimensional data, a significant amount of attributes may be irrelevant
# Definition of reference sets: for local methods, reference sets are often nearest-neighbor based
# Incomparable scores for different dimensionalities: different subspaces produce incomparable scores
# Interpretability of scores: the scores often no longer convey a semantic meaning
# Exponential search space: the search space can no longer be systematically scanned
# [[Data snooping]] bias: given the large search space, for every desired significance an hypothesis can be found
# Hubness: certain objects occur more frequently in neighbor lists than others.
 
Many of the analyzed specialized methods tackle one or another of these problems, but there remain many open research questions.
 
==See also==
{{Div col|cols=3}}
*[[Bellman equation]]
*[[Backwards induction]]
*[[Cluster analysis]]
*[[Clustering high-dimensional data]]
*[[Combinatorial explosion]]
*[[Concentration of measure]]
*[[Dimension reduction]]
*[[Dynamic programming]]
*[[Fourier-related transforms]]
*[[High-dimensional space]]
*[[Linear least squares (mathematics)|Linear least squares]]
*[[Multilinear principal component analysis|Multilinear PCA]]
*[[Multilinear subspace learning]]
*[[Principal component analysis]]
*[[Quasi-random]]
*[[Singular value decomposition]]
*[[Time series]]
*[[Wavelet]]
{{Div col end}}
 
==References==
{{Reflist}}
 
[[Category:Numerical analysis]]
[[Category:Dynamic programming]]
[[Category:Machine learning]]

Revision as of 05:38, 10 January 2014

The curse of dimensionality refers to various phenomena that arise when analyzing and organizing data in high-dimensional spaces (often with hundreds or thousands of dimensions) that do not occur in low-dimensional settings such as the three-dimensional physical space of everyday experience.

There are multiple phenomena referred to by this name in domains such as numerical analysis, sampling, combinatorics, machine learning, data mining and databases. The common theme of these problems is that when the dimensionality increases, the volume of the space increases so fast that the available data becomes sparse. This sparsity is problematic for any method that requires statistical significance. In order to obtain a statistically sound and reliable result, the amount of data needed to support the result often grows exponentially with the dimensionality. Also organizing and searching data often relies on detecting areas where objects form groups with similar properties; in high dimensional data however all objects appear to be sparse and dissimilar in many ways which prevents common data organization strategies from being efficient.

The term curse of dimensionality was coined by Richard E. Bellman when considering problems in dynamic optimization.[1][2]

The "curse of dimensionality" as open problem

The "curse of dimensionality" is often usedPotter or Ceramic Artist Truman Bedell from Rexton, has interests which include ceramics, best property developers in singapore developers in singapore and scrabble. Was especially enthused after visiting Alejandro de Humboldt National Park. as a blanket excuse for not dealing with high-dimensional data. However, the effects are not yet completely understood by the scientific community, and there is ongoing research. On one hand, the notion of intrinsic dimension refers to the fact that any low-dimensional data space can trivially be turned into a higher dimensional space by adding redundant (e.g. duplicate) or randomized dimensions, and in turn many high-dimensional data sets can be reduced to lower dimensional data without significant information loss. This is also reflected by the effectiveness of dimension reduction methods such as principal component analysis in many situations. For distance functions and nearest neighbor search, recent research also showed that data sets that exhibit the curse of dimensionality properties can still be processed unless there are too many irrelevant dimensions, while relevant dimensions can make some problems such as cluster analysis actually easier.[3][4] Secondly, methods such as Markov chain Monte Carlo or shared nearest neighbor methods[3] often work very well on data that were considered intractable by other methods due to high dimensionality.

Curse of dimensionality in different domains

Combinatorics

In some problems, each variable can take one of several discrete values, or the range of possible values is divided to give a finite number of possibilities. Taking the variables together, a huge number of combinations of values must be considered. This effect is also known as the combinatorial explosion. Even in the simplest case of d binary variables, the number of possible combinations already is , exponential in the dimensionality. Naively, each additional dimension doubles the effort needed to try all combinations.

Sampling

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My web site - http://www.hostgator1centcoupon.info/ There is an exponential increase in volume associated with adding extra dimensions to a mathematical space. For example, 102=100 evenly-spaced sample points suffice to sample a unit interval (a "1-dimensional cube") with no more than 10-2=0.01 distance between points; an equivalent sampling of a 10-dimensional unit hypercube with a lattice that has a spacing of 10-2=0.01 between adjacent points would require 1020 sample points. In general, with a spacing distance of 10-n the 10-dimensional hypercube appears to be a factor of 10n(10-1) "larger" than the 1-dimensional hypercube, which is the unit interval. In the above example n=2: when using a sampling distance of 0.01 the 10-dimensional hypercube appears to be 1018 "larger" than the unit interval. This effect is a combination of the combinatorics problems above and the distance function problems explained below.

Optimization

When solving dynamic optimization problems by numerical backward induction, the objective function must be computed for each combination of values. This is a significant obstacle when the dimension of the "state variable" is large.

Machine learning

In machine learning problems that involve learning a "state-of-nature" (maybe an infinite distribution) from a finite number of data samples in a high-dimensional feature space with each feature having a number of possible values, an enormous amount of training data are required to ensure that there are several samples with each combination of values. With a fixed number of training samples, the predictive power reduces as the dimensionality increases, and this is known as the Hughes effect[5] or Hughes phenomenon (named after Gordon F. Hughes).[6][7]

Bayesian statistics

The curse of dimensionality has often been a difficulty with Bayesian statistics, for which the posterior distributions often have many parameters.

However, this problem has been largely overcome by the advent of simulation-based Bayesian inference, especially using Markov chain Monte Carlo methods, which suffices for many practical problems. Of course, simulation-based methods converge slowly and therefore simulation-based methods are not a panacea for high-dimensional problems.

Distance functions

When a measure such as a Euclidean distance is defined using many coordinates, there is little difference in the distances between different pairs of samples.

One way to illustrate the "vastness" of high-dimensional Euclidean space is to compare the proportion of a hypersphere with radius and dimension , to that of a hypercube with sides of length , and equivalent dimension. The volume of such a sphere is: The volume of the cube would be: As the dimension of the space increases, the hypersphere becomes an insignificant volume relative to that of the hypercube. This can clearly be seen by comparing the proportions as the dimension goes to infinity:

as .

Thus, in some sense, nearly all of the high-dimensional space is "far away" from the centre, or, to put it another way, the high-dimensional unit space can be said to consist almost entirely of the "corners" of the hypercube, with almost no "middle". This is an important intuition for understanding the chi-squared distribution.Template:Why?

Given a single distribution, the minimum and the maximum distances become indiscernible as the difference between the minimum and maximum compared to the minimum distance converges to zero:[8]

.

This is often cited as distance functions losing their usefulness in high dimensionality.

Nearest neighbor search

The effect complicates nearest neighbor search in high dimensional space. It is not possible to quickly reject candidates by using the difference in one coordinate as a lower bound for a distance based on all the dimensions.[9][10]

However, recent research indicates that the mere number of dimensions does not necessarily result in problems,[3] since relevant additional dimensions can also increase the contrast. In addition, the resulting ranking remains useful to discern close and far neighbors. Irrelevant ("noise") dimensions however reduce the contrast as expected. In time series analysis, where the data are inherently high-dimensional, distance functions also work reliably as long as the signal-to-noise ratio is high enough.[4]

k-nearest neighbor classification

Another effect of high dimensionality on distance functions concerns k-nearest neighbor (k-NN) graphs constructed from a data set using some distance functions. As dimensionality increases, the indegree distribution of the k-NN digraph becomes skewed to the right, resulting in the emergence of hubs, as data instances that appear in many more k-NN lists of other instances from the data set than expected. This phenomenon can have a considerable impact on various techniques for classification (including the k-NN classifier), semi-supervised learning, and clustering,[11] and it also affects information retrieval.[12]

Anomaly detection

In a recent survey, Zimek et al. identified the following problems when searching for anomalies in high-dimensional data:[13]

  1. Concentration of scores and distances: derived values such as distances become numerically similar
  2. Irrelevant attributes: in high dimensional data, a significant amount of attributes may be irrelevant
  3. Definition of reference sets: for local methods, reference sets are often nearest-neighbor based
  4. Incomparable scores for different dimensionalities: different subspaces produce incomparable scores
  5. Interpretability of scores: the scores often no longer convey a semantic meaning
  6. Exponential search space: the search space can no longer be systematically scanned
  7. Data snooping bias: given the large search space, for every desired significance an hypothesis can be found
  8. Hubness: certain objects occur more frequently in neighbor lists than others.

Many of the analyzed specialized methods tackle one or another of these problems, but there remain many open research questions.

See also

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References

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    Republished: 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  2. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  3. 3.0 3.1 3.2 Template:Cite doi
  4. 4.0 4.1 Template:Cite doi
  5. Template:Cite doi
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  7. Not to be confused with the unrelated, but similarly named, Hughes effect in electromagnetism (named after Declan C. Hughes) which refers to an asymmetry in the hysteresis curves of laminated cores made of certain magnetic materials, such as permalloy or mu-metal, in alternating magnetic fields.
  8. Template:Cite doi
  9. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  10. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  11. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
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